A Review on Various Techniques for Object Detection

  • Soumya kelur
  • Ranjan kumar


Detection of object and recognition of objects in real world computing environment is one of the important tasks in computer vision. To solve this task there are many challenges in designing algorithm, we have to introduce different and innovative algorithms to detect objects in natural environments. Detection of object is a computer technology which is related to the computer vision and image processing. This paper provides a brief description of techniques, methods and algorithms used in object detection. At last it highlights the importance of selective image encryption. 

Keywords: Support vector machine (SVM); Human visual system; object detection techniques; image processing; computer vision


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How to Cite
kelur, S., & kumar, R. (2018). A Review on Various Techniques for Object Detection. Asian Journal For Convergence In Technology (AJCT) ISSN -2350-1146, 4(II). Retrieved from https://asianssr.org/index.php/ajct/article/view/599

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